International audienceDespite the ever-growing number of ocean data, the interior of the ocean remains undersampled in regions of high variability such as the Gulf Stream. In this context, neural networks have been shown to be effective for interpolating properties and understanding ocean processes. We introduce OSnet (Ocean Stratification network), a new ocean reconstruction system aimed at providing a physically consistent analysis of the upper ocean stratification. The proposed scheme is a bootstrapped multilayer perceptron trained to predict simultaneously temperature and salinity (T−S) profiles down to 1000 m and the mixed-layer depth (MLD) from surface data covering 1993 to 2019. OSnet is trained to fit sea surface temperature and sea...
articleThis article deals with an important aspect of the neural network retrieval of sea surface sa...
Using neural networks to retrieve sea surface salinity (SSS) from SMOS observations raises several d...
Les échanges d'eau au sein du cycle global hydrologique sont déterminés par des contraintes mécaniqu...
International audienceDespite the ever-growing number of ocean data, the interior of the ocean remai...
International audienceDespite the ever-growing amount of ocean’s data, the interior of the ocean rem...
The OSnet Gulf Stream product consists of 4D daily Temperature, Salinity and Mixed Layer Depth, avai...
Subsurface ocean measurements are extremely sparse and irregularly distributed, narrowing our abilit...
The application of remote sensing observations in estimating ocean sub-surface temperatures has been...
A neural network model is proposed for reconstructing ocean salinity profiles from sea surface param...
This work reports a new methodology for deriving monthly averages of temperature (T) and salinity (S...
We provide here the datasets used for the development of a deep learning algorithm which is presentl...
articleThis article deals with an important aspect of the neural network retrieval of sea surface sa...
Using neural networks to retrieve sea surface salinity (SSS) from SMOS observations raises several d...
Les échanges d'eau au sein du cycle global hydrologique sont déterminés par des contraintes mécaniqu...
International audienceDespite the ever-growing number of ocean data, the interior of the ocean remai...
International audienceDespite the ever-growing amount of ocean’s data, the interior of the ocean rem...
The OSnet Gulf Stream product consists of 4D daily Temperature, Salinity and Mixed Layer Depth, avai...
Subsurface ocean measurements are extremely sparse and irregularly distributed, narrowing our abilit...
The application of remote sensing observations in estimating ocean sub-surface temperatures has been...
A neural network model is proposed for reconstructing ocean salinity profiles from sea surface param...
This work reports a new methodology for deriving monthly averages of temperature (T) and salinity (S...
We provide here the datasets used for the development of a deep learning algorithm which is presentl...
articleThis article deals with an important aspect of the neural network retrieval of sea surface sa...
Using neural networks to retrieve sea surface salinity (SSS) from SMOS observations raises several d...
Les échanges d'eau au sein du cycle global hydrologique sont déterminés par des contraintes mécaniqu...